Many AI agent frameworks prioritize backend development in Python, complicating full-stack AI applications with JavaScript or TypeScript frontends. This challenges frontend developers in prototyping, integrating, and refining AI features.
Mastra is an open-source TypeScript framework for AI agents, offering tools like agents, workflows, and RAG.
Sam Bhagwat and Abhi Aiyer, Mastra co-founders, joined a podcast with Nick Nisi to discuss frontend tooling for AI agents, AI agent primitives, MCP integration, and more.
Nick Nisi, a conference organizer, speaker, and developer, focuses on web ecosystem tools. He has organized and emceed several conferences and leads NebraskaJS. Nick is a developer experience engineer at WorkOS.
Please click here to see the transcript of this episode.
Sponsors
This episode is brought to you by Augment Code. For professional software engineering, Augment Code is an AI assistant that works with your entire codebase. Start a free trial at AugmentCode.com.
Building agentic AI apps requires more than just a good LLM. Agents need short-term memory, long-term recall, and fast retrieval. Redis offers the fastest caching solution for AI context. Learn more at redis.io/genai.
For building text-to-SQL chatbots, Select Star captures metadata like lineage, usage, and queries in a knowledge graph, ensuring your AI answers with facts. Learn more at selectstar.com.
